2019 IEEE International Conference on Imaging Systems and Techniques (IST) 2019
DOI: 10.1109/ist48021.2019.9010423
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Big Data driven U-Net based Electrical Capacitance Image Reconstruction Algorithm

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Cited by 12 publications
(9 citation statements)
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“…Considering that the reconstruction is an impedance distribution map, the evaluation indicators of image reconstruction quality were applied to evaluate the reconstruction quality of the impedance distribution map . Relative image error (RIE) and image correlation coefficient (ICC) are general indicators that are used to evaluate the quality of image reconstruction. Similarly, these two indicators, RIE and ICC, were used to evaluate the reconstruction quality of the impedance distribution map. RIE and ICC were defined as follows where Y ′ = [ y 1 ′ , y 2 ′ , ..., y l ′ ] represents the impedance distribution data of gold standard, Y * = [ y 1 * , y 2 * , ..., y l * ] is the impedance distribution reconstruction data (predicted value), and Y ̅* and Y ̅′ are the mean values of Y * and Y ′, respectively.…”
Section: Materials and Methodsmentioning
confidence: 99%
“…Considering that the reconstruction is an impedance distribution map, the evaluation indicators of image reconstruction quality were applied to evaluate the reconstruction quality of the impedance distribution map . Relative image error (RIE) and image correlation coefficient (ICC) are general indicators that are used to evaluate the quality of image reconstruction. Similarly, these two indicators, RIE and ICC, were used to evaluate the reconstruction quality of the impedance distribution map. RIE and ICC were defined as follows where Y ′ = [ y 1 ′ , y 2 ′ , ..., y l ′ ] represents the impedance distribution data of gold standard, Y * = [ y 1 * , y 2 * , ..., y l * ] is the impedance distribution reconstruction data (predicted value), and Y ̅* and Y ̅′ are the mean values of Y * and Y ′, respectively.…”
Section: Materials and Methodsmentioning
confidence: 99%
“…15,16 Convolutional neural networks (CNNs) were also proved to be feasible for ECT image reconstruction and improved image reconstruction has been achieved for the simple distributions with stationary objects in both simulation and experiment. [17][18][19] Although the type and structure of the network are vital for deep learning-based ECT image reconstruction, the dataset determines the measurement accuracy and generalization ability of the trained model. The model trained with the dataset only including the typical flow patterns is difficult to be used for the particle flow measurement in CFB.…”
Section: Zheng Et Al Proposed a Supervised Autoencoder Neural Network Tomentioning
confidence: 99%
“…Zheng et al proposed a supervised autoencoder neural network to solve the ECT image reconstruction problem for four typical flow patterns (annular, stratified, single bar, and two bar), where the dataset is obtained by numerical simulation 15,16 . Convolutional neural networks (CNNs) were also proved to be feasible for ECT image reconstruction and improved image reconstruction has been achieved for the simple distributions with stationary objects in both simulation and experiment 17–19 . Although the type and structure of the network are vital for deep learning‐based ECT image reconstruction, the dataset determines the measurement accuracy and generalization ability of the trained model.…”
Section: Introductionmentioning
confidence: 99%
“…The need for tools that can compromise the trade-off between high quality reconstructed images and computational efficiency, is currently the main interest of machine learning (ML) [17,18], more specifically, deep neural network (DNN) methods [19]. DNN methods have been utilized in many fields due to their ability to map complex nonlinear functions [20,21]. DNN algorithms have been transferred and adapted such as in image reconstruction methods based on the convolutional neural network (CNN) [22], multi-scale CNNs [23], long short-term memory (LSTM) [24], and autoencoder [25].…”
Section: Introductionmentioning
confidence: 99%